Get hands-on learning on GPU based labs to become an expert on Deep Learning and enhance your career. This is an online and web-based instructor led program with a total of 5 credit points which leads you to PG Certificate Program in AI & DL from MAHE

108+learning hours

Real-time case studies

Eligible for Graduates with 2+ yrs of experience in IT/ITES

108+learning hours

Real-time case studies

Eligible for Graduates with 2+ yrs of experience in IT/ITES

₹ 59,000

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Deep Learning with TensorFlow

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Overview

GPU Based Environment

Access to a GPU-based environment and get hands-on experience in different tools.

10+ Real-Life Case Studies

Practice on real case studies, ensures complete understanding and retention of the knowledge on each of the concepts.

Artificial Intelligence is enabling businesses to grow at a rapid pace. It is facilitating cost and time-effectiveness for them, while demanding more professionals in the field. Candidates pursuing a career in AI and DL can take up this course and fill the gap between the demand and supply of AI/DL professionals in the industry.

This course introduces you to TensorFlow, which is an open-source library by Google, for Machine Learning and Deep Learning. It is the standard tool for developing Deep Learning applications. Also, with this course, you will learn about Image Recognition and Speech Recognition using Convolution Neural Networks (CNN) and Recurrent Neural Networks (RNN).

With Manipal ProLearn’s course, you will gain functional knowledge in Deep Learning and TensorFlow. The course incorporates experiential learning practices through case studies and assignments involving TensorFlow, Keras and other tools. This will help you become job-ready. You will

Learn about Image Recognition and Speech Recognition with Deep Learning.

Apply TensorFlow, Scikit Library and Keras to solve problems.

Get an in-depth understanding of the use of Convolution Neural Networks (CNN) and Recurrent Neural Networks (RNN).